The Deep Promotion Time Cure Model
Abstract
We propose a novel method for predicting time-to-event in the presence of cure fractions based on flexible survivals models integrated into a deep neural network framework. Our approach allows for non-linear relationships and high-dimensional interactions between covariates and survival and is suitable for large-scale applications. Furthermore, we allow the method to incorporate an identified predictor formed of an additive decomposition of interpretable linear and non-linear effects and add an orthogonalization layer to capture potential higher dimensional interactions. We demonstrate the usefulness and computational efficiency of our method via simulations and apply it to a large portfolio of US mortgage loans. Here, we find not only a better predictive performance of our framework but also a more realistic picture of covariate effects.
Cite
@article{arxiv.2305.11575,
title = {The Deep Promotion Time Cure Model},
author = {Victor Medina-Olivares and Stefan Lessmann and Nadja Klein},
journal= {arXiv preprint arXiv:2305.11575},
year = {2024}
}